Publication | Closed Access
Cross-subject workload classification using pupil-related measures
52
Citations
30
References
2018
Year
Artificial IntelligenceEngineeringMachine LearningBiometricsTask AnalysisIntelligent SystemsAttentionSocial SciencesClassification MethodData SciencePattern RecognitionAffective ComputingMulti-task LearningWorkload CharacterizationWorkload ClassifiersReal-time Workload ClassificationCognitive ScienceCross-subject Workload ClassificationAutomatic ClassificationTask PerformanceKnowledge DiscoveryIntelligent ClassificationRehabilitationComputer ScienceEye TrackingCognitive Load
Real-time evaluation of a person's cognitive load can be desirable in many situations. It can be employed to automatically assess or adjust the difficulty of a task, as a safety measure, or in psychological research. Eye-related measures, such as the pupil diameter or blink rate, provide a non-intrusive way to assess the cognitive load of a subject and have therefore been used in a variety of applications. Usually, workload classifiers trained on these measures are highly subject-dependent and transfer poorly to other subjects. We present a novel method to generalize from a set of trained classifiers to new and unknown subjects. We use normalized features and a similarity function to match a new subject with similar subjects, for which classifiers have been previously trained. These classifiers are then used in a weighted voting system to detect workload for an unknown subject. For real-time workload classification, our methods performs at 70.4% accuracy. Higher accuracy of 76.8% can be achieved in an offline classification setting.
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